NeurIPS2021

Optimal Rates for Nonparametric Density Estimation under Communication Constraints

Jayadev Acharya, Clément L. Canonne, Aditya Vikram Singh, Himanshu Tyagi

被引用 17 次

摘要

We consider density estimation for Besov spaces when each sample is quantized to only a limited number of bits. We provide a noninteractive adaptive estimator that exploits the sparsity of wavelet bases, along with a simulate-and-infer technique from parametric estimation under communication constraints. We show that our estimator is nearly rate-optimal by deriving minimax lower bounds that hold even when interactive protocols are allowed. Interestingly, while our wavelet-based estimator is almost rate-optimal for Sobolev spaces as well, it is unclear whether the standard Fourier basis, which arise naturally for those spaces, can be used to achieve the same performance.